Department of Electrical Engineering, Shahid Beheshti University, 1983969411, Tehran, Iran.
Department of Biomedical Engineering, Hamedan University of Technology, 6516913733, Hamedan, Iran.
Sci Rep. 2022 Apr 22;12(1):6633. doi: 10.1038/s41598-022-10244-6.
Due to the importance of continuous monitoring of blood pressure (BP) in controlling hypertension, the topic of cuffless BP estimation has been widely studied in recent years. A most important approach is to explore the nonlinear mapping between the recorded peripheral signals and the BP values which is usually conducted by deep neural networks. Because of the sequence-based pseudo periodic nature of peripheral signals such as photoplethysmogram (PPG), a proper estimation model needed to be equipped with the 1-dimensional (1-D) and recurrent layers. This, in turn, limits the usage of 2-dimensional (2-D) layers adopted in convolutional neural networks (CNN) for embedding spatial information in the model. In this study, considering the advantage of chaotic approaches, the recurrence characterization of peripheral signals was taken into account by a visual 2-D representation of PPG in phase space through fuzzy recurrence plot (FRP). FRP not only provides a beneficial framework for capturing the spatial properties of input signals but also creates a reliable approach for embedding the pseudo periodic properties to the neural models without using recurrent layers. Moreover, this study proposes a novel deep neural network architecture that combines the morphological features extracted simultaneously from two upgraded 1-D and 2-D CNNs capturing the temporal and spatial dependencies of PPGs in systolic and diastolic BP estimation. The model has been fed with the 1-D PPG sequences and the corresponding 2-D FRPs from two separate routes. The performance of the proposed framework was examined on the well-known public dataset, namely, multi-parameter intelligent in Intensive Care II. Our scheme is analyzed and compared with the literature in terms of the requirements of the standards set by the British Hypertension Society (BHS) and the Association for the Advancement of Medical Instrumentation (AAMI). The proposed model met the AAMI requirements, and it achieved a grade of A as stated by the BHS standard. In addition, its mean absolute errors and standard deviation for both systolic and diastolic blood pressure estimations were considerably low, 3.05 ± 5.26 mmHg and 1.58 ± 2.6 mmHg, in turn.
由于连续监测血压(BP)在控制高血压中的重要性,近年来无袖带血压估计已成为广泛研究的课题。一种最重要的方法是探索记录的外周信号与 BP 值之间的非线性映射,这通常通过深度神经网络来进行。由于外周信号(如光体积描记图(PPG))具有基于序列的伪周期性质,因此需要为适当的估计模型配备一维(1-D)和递归层。这反过来又限制了卷积神经网络(CNN)中二维(2-D)层在模型中嵌入空间信息的使用。在这项研究中,考虑到混沌方法的优势,通过模糊递归图(FRP)在外周信号的相空间中对 PPG 进行视觉 2-D 表示,从而考虑了外周信号的递归特征。FRP 不仅为捕获输入信号的空间特性提供了有益的框架,而且为在不使用递归层的情况下将伪周期特性嵌入到神经模型中提供了可靠的方法。此外,本研究提出了一种新的深度神经网络架构,该架构结合了从两个升级的一维和二维 CNN 中同时提取的形态特征,这些特征分别用于估计收缩压和舒张压时的 PPG 时间和空间依赖性。该模型通过两条独立的路径输入一维 PPG 序列和相应的二维 FRP。该框架的性能已在著名的公共数据集 Multi-Parameter Intelligent in Intensive Care II 上进行了检查。我们的方案从英国高血压学会(BHS)和医疗器械促进协会(AAMI)设定的标准的要求方面与文献进行了分析和比较。所提出的模型符合 AAMI 的要求,并达到了 BHS 标准规定的 A 级。此外,它对收缩压和舒张压的估计的平均绝对误差和标准偏差都相当低,分别为 3.05±5.26mmHg 和 1.58±2.6mmHg。